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Agenda Introduction Architectural Features for Scalability and Evolvability – and why we might care A Quick Tour Through the SDN Design Space A Few Conclusions Q&A 2

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Danger Will Robinson!!! This talk is intended to be controversial/provocative (and a bit “sciencey”) 3

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Introduction “Lots” of hype around OpenFlow, SDN, SDS, … – duh In trying to understand all of this, I went back architectural principles – An attempt to take an objective look at all of this – Ideas from control theory, systems biology, quantitative risk engineering, … Obviously we need programmatic automation of – Configuration, management, monitoring, optimization(s), … – Some components already available Puppet, Chef, rancid,... – Note everything open (interfaces, APIs, protocols, source) – along with s/w a macro-trend Perhaps obvious: – Scalability and Evolvability key to building/operating the Internet – But what are Scalability/Evolvability, and what architectures enable them? Through this lens: What is going on with OpenFlow, SDN, …? 4

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Bottom Line I hope to convince you that uncertainty and volatility are the “coin of the realm” of the future, why this is the case, how SDN (and the rise of software in general) is accelerating this effect, and finally, what we might do to take advantage of it. 0 0 s/take advantage of/survive/ 5

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What are Scalability and Evolvability? First, why do we care? – Goes without saying? – That said… Scalability is robustness to changes to the size and complexity of a system as a whole Evolvability is robustness of lineages to changes on long time scales Other system features cast as robustness – Reliability is robustness to component failures – Efficiency is robustness to resource scarcity – Modularity is robustness to component rearrangements In our case: holds for protocols, systems, and operations 6

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OK, Fine. But What is Robustness? Definition: A [property] of a [system] is robust if it is [invariant] with respect to a [set of perturbations], up to some limit Fragility is the opposite of robustness – If you're fragile you depend on 2nd order effects (acceleration) and the curve is concave – Catch me later if you’d like to chat further about this… A system can have a property that is robust to one set of perturbations and yet fragile for a different property and/or perturbation  the system is Robust Yet Fragile (RYF-complex) – Or the system may collapse if it experiences perturbations above a certain threshold (K-fragile) Example: A possible RYF tradeoff is that a system with high efficiency (i.e., using minimal system resources) might be unreliable (i.e., fragile to component failure) or hard to evolve See Alderson, D. and J. Doyle, “Contrasting Views of Complexity and Their Implications For Network-Centric Infrastructures”, IEEE TRANSACTIONS ON SYSTEMS, MAN, AND CYBERNETICS—PART A: SYSTEMS AND HUMANS, VOL. 40, NO. 4, JULY

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[a system] can have [a property] robust for [a set of perturbations] Robust Fragile Robust Yet Fragile (RYF) Yet be fragile for [a different property] Or [a different perturbation] Conjecture: The RYF tradeoff is a hard limit that cannot be overcome. Slide courtesy John Doyle 8

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Brief Aside: Fragility and Scaling (geeking out for a sec…) A bit of a formal description of fragility – Let z be some stress level, p some property, and – Let H(p,z) be the (negative valued) harm function – Then for the fragile the following must hold H(p,nz) < nH(p,z) for 0 < nz < K Basically, the “harm function” is non-linear This inequality is importantly non-mean preserving (Jensen’s Inequality) Non-mean preserving: H(p,(z 1 + z 2 )/2) != (H(p,z 1 ) + H(p,z 2 ))/2 –  model error and hence additional uncertainty For example, a coffee cup on a table suffers non-linearly more from large deviations (H(p, nz)) than from the cumulative effect of smaller events (nH(p,z)) – So the cup is damaged far more from (i.e., destroyed by) tail events than those within a few σ of the mean – Too theoretical? Perhaps, but consider: ARP storms, micro-loops, congestion collapse, AS 7007, … – BTW, nature requires this property Consider: jump off something 1 foot high 30 times v/s jumping off something 30 feet high once When we say something scales like O(n 2 ), what we mean is the damage to the network has constant acceleration (2) for weird enough n (e.g., outside say, 10 σ) – Again, ARP storms, congestion collapse, AS 7007, DDOS, …  non-linear damage Something we don’t have time for: Antifragility – Is this related to our work? See fragility.shtml 10

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Robustness vs. Complexity Systems View Domain of the fragile Domain of the Robust What this curve is telling us is that a system needs complexity to achieve robustness (wrt some feature to some perturbation), but like everything else, too much of of a good thing…. 11

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Ok, but what is Complexity? “In our view, however, complexity is most succinctly discussed in terms of functionality and its robustness. Specifically, we argue that complexity in highly organized systems arises primarily from design strategies intended to create robustness to uncertainty in their environments and component parts.” 12 See Alderson, D. and J. Doyle, “Contrasting Views of Complexity and Their Implications For Network-Centric Infrastructures”, IEEE TRANSACTIONS ON SYSTEMS, MAN, AND CYBERNETICS—PART A: SYSTEMS AND HUMANS, VOL. 40, NO. 4, JULY 2010

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BTW, This Might Also Be Obvious But… Networks are incredibly general and expressive structures – G = (V,E) Networks are extremely common in nature – Immune systems, energy metabolism, transportation systems, Internet, macro economies, forest ecology, the main sequence (stellar evolution), galactic structures, …. – “Almost everything you see can be explained as either a network and/or a queue” So it comes as no surprise that we study, for example, biological systems in our attempts to get a deeper understanding of complexity and the architectures that provide for scalability, evolvability, and the like Ok, this is cool, but what are the key architectural takeaways from this work for us ? – where us \in {ops, engineering, architects …} – And how might this effect the way we build and operate networks? 13

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Key Architectural Takeaways What we have learned is that there are fundamental architectural building blocks found in systems that scale and are evolvable. These include – RYF complexity – Bowtie architectures – Massively distributed with robust control loops Contrast optimal control loops and hop-by-hop control – Highly layered But with layer violations – Protocol Based Architectures (PBAs) – Degeneracy 14

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OK, Fast Forward to Today: OF 1.1+ Why this design? Combinatoric explosion(s) s/a routes*policies in single table However, intractable complexity: O(n!) paths through tables of a single switch c ≈ a (2^l) + α where a = number of actions in a given table, l = width of match field, and α all the factors I didn’t consider (e.g., table size, function, group tables, meter tables, …) Too complex/brittle Algorithmic complexity What is a flow? Not naturally implementable on ASIC h/w Breaks new reasoning systems (e.g., frenetic) No fixes for lossy abstractions Architectural questions So question: Is the flow-based abstraction “right” for general network programmability? 23

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Putting it all Together OF/SDN OL/SDN CP/SDN OF/SDN proposes a new architectural waist (not exactly sure where) CP/SDN makes existing control planes programmable OL/SDN is an application from the perspective of the Internet’s waist Open Loop Control + s/w + Moore’s Law  Randomness, Uncertainty, and Volatility 25

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Summary/Where to from Here? First, note that SDN doesn’t do anything fundamentally different Moves architectural features (and maybe complexity) around in the design space Be conservative with the narrow waist -- constraints that deconstrain – We’re pretty good at this – Reuse parts where possible (we’re also pretty good at this; traceroute a canonical example) Expect uncertainty and volatility from above – Inherent in software, and importantly, in acceleration We know the network is RYF-complex so we know that for H(p,x), the “harm” function, d 2 H(p,x)/dx 2 ≠ 0 When you architect for robustness, understand what fragilities have been created –  Software (SDN or or …) is inherently non-linear, volatile, and uncertainhttp://spotcloud.com We need to learn to live with/benefit from the non-linear, random, uncertain DevOps – We already have some components (Puppet, Chef, rancid, …) Develop our understanding bottom up (by “tinkering”) – Actually an “Internet principle”. We learn incrementally… – Avoid the top-down (in epistemology, science, engineering,…) – Bottom-up v. top-down innovation cycles – cf Curtis Carlson Design future software ecosystems to benefit from variability and uncertainty rather than trying to engineer it out (as shielding these systems from the random may actually cause harm) – For example, design in degeneracy -- i.e., “ability of structurally different elements of a system to perform the same function”. In other words, design in partial functional overlap of elements capable of non-rigid, flexible and versatile functionality. This allows for evolution *plus* redundancy. Contrast m:n redundancy (i.e., we do just the opposite). 26